This study tests whether using a health app (Huawei Health) and a smart body fat scale can help overweight patients with schizophrenia or bipolar disorder lose weight and stay engaged in their health. What We're Testing: 1. Patients who use the app and scale for 4 months (Group 1) will lose more weight than those who use them for 2 months (Group 2). 2. Patients who track their weight, diet, and exercise regularly (≥3 times/week) will lose more weight than those who don't. 3. Seeing weight loss results may motivate patients to keep using the app and scale. How It Works: Patients weigh themselves weekly with the scale (auto-syncs to the app) and upload dietary log in Huawei Health app. The app will gives personalized diet/exercise tips and tracks progress. Doctors and nutritionists provide extra support through messages. Goal: To see if this digital tool + professional support combo works better for long-term weight management.
The investigators will recruit the patients diagnosed with schizophrenia or bipolar disorder from Beijing Anding Hospital. Participants will use a mobile phone app (Huawei Health) to collect data on daily activities and calorie consumption. The smart body fat scale with high-precision weighing chip (Huawei Scale 2pro) will be used to collect heart rate, weight, BMI, body type, basal metabolic rate, fat rate, fat free body weight, skeletal muscle mass, bone salt content, visceral fat grade, body water (%), body protein rate and body composition, and all data will be uploaded to the app. Participants could also record their daily dietary intake (for calculation of calorie intake) in the health app. This is a 6-month, single-center, stepped wedge-shaped cluster randomized study. It is planned to recruit 204 overweight subjects from 6 units from Beijing Anding Hospital. The six clinical units comprise four inpatient wards, one day rehabilitation unit, and one outpatient department. All units (clusters) were randomly allocated to two batches (3 units each) using a computer-generated sequence. Batch 1 received the intervention from Month 3 to Month 6, while Batch 2 started from Month 5 to Month 6 (total study duration: 6 months). All units underwent baseline observation during Months 1-2, followed by a 2-week transition period for training. All clusters follow usual care prior to their assigned intervention period, with months 1-2 serving as baseline control and months 7-8 for full-intervention observation across all units. Each unit operates as an independent intervention cluster with dedicated staff teams and unit-specific WeChat-based communication groups. Intervention materials, reinforcement messages, counseling content, and technical support are synchronized with each cluster's assigned timeline. Clinical staff will be trained on intervention delivery, digital tool usage, and adherence protocols and are required to adhere strictly to the scheduled rollout sequence. Monitoring and supervision mechanisms will be implemented to track adherence, engagement, and protocol compliance in real-time. Each cluster undergoes a two-week pre-implementation transition period for device distribution, app installation, and training. The intervention combines self-weighing using using smart body fat scale, dietary logging, exercise management, and behavioral reinforcement. Behavioral reinforcement includes weekly personalized feedback messages and real-time alerts for missed self-monitoring via WeChat messages. We assess clinical, functional, and subjective outcomes at baseline and monthly intervals. Socio-demographic and clinical characteristics (age, sex, education, income, medical history) are extracted from EHRs. Body composition metrics (BMI, body fat percentage, etc.) are automatically recorded during weigh-ins. Subjective outcomes will be collected using validated scales at Month 1,2,3 and 6. Smart scale pairing success rate and weekly weigh-in adherence will be used to assess protocol feasibility. To capture user perspectives on mobile app and weighing smart scale, we will conduct 30-minute semi-structured interviews with 30 purposely selected participants (stratified by adherence and diagnosis), exploring app usability, behavioral impacts, and improvement suggestions.
Study Type
INTERVENTIONAL
Allocation
RANDOMIZED
Purpose
TREATMENT
Masking
NONE
Enrollment
204
Participants receive a digital-behavioral intervention via Huawei Health App and smart scale: 1. Weekly weigh-ins (auto-synced) 2. Dietary logging (≥3x/week) with calorie-deficit targets 3. Biweekly exercise plans (150-300 min/week) 4. Weekly motivational messages Implementation: Staggered rollout: Batch 1 (Month 3-6), Batch 2 (Month 5-6). Includes 2-week training. Effectiveness monitored via app metrics and adherence. Routine care maintained.
Beijing Anding Hospital
Beijing, Beijing Municipality, China
RECRUITINGPercent weight loss
Proportion of body weight lost, assessed via smart scale synced with app. Factors distinguish those who do/don't lose weight is detected by using machine learning.
Time frame: At the end of Months 1, 2, 3, and 6
Adherence to self-monitoring
Number of days per week participants complete self-weighing, dietary logging and follow up visits.
Time frame: At the end of Months 1, 2, 3, and 6
Longitudinal adherence to self-monitoringcompliance to app + scale protocol and the participants who have bad compliance is compared by percent weight loss.
Adherence measured as self-monitoring days per week, assessed monthly across the 6-month study.
Time frame: At the end of Months 1, 2, 3, and 6
Weight loss by adherence level
Comparison of percent weight loss between high- and low-adherence groups.
Time frame: At the end of Months 1, 2, 3, and 6
Association between adherence and weight loss
Independent variables include diagnosis, treatment, baseline weight, self-monitoring adherence, %WL from the previous month (e.g., %WL at the end of month 2 predicted self-monitoring during month 3), and the interaction between condition and %WL.
Time frame: At the end of Months 1, 2, 3, and 6
Prediction of future adherence by prior weight loss
Generalized linear mixed models will test whether weight loss in a given month predicts adherence in the following month.
Time frame: At the end of Months 1, 2, 3, and 6
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